Joint Sensing and Semantic Communications with Multi-Task Deep Learning
Yalin E. Sagduyu, Tugba Erpek, Aylin Yener, Sennur Ulukus

TL;DR
This paper proposes a multi-task deep learning framework for integrated sensing and semantic communications, enabling efficient data transmission and target detection over noisy wireless channels with improved fidelity.
Contribution
It introduces a novel multi-task deep learning system that combines joint sensing and semantic communication functions within a unified neural network architecture.
Findings
Effective joint sensing and communication demonstrated with CIFAR-10 data.
System robust against AWGN and Rayleigh fading channel effects.
Enhanced semantic classification accuracy through integrated DNNs.
Abstract
This paper explores the integration of deep learning techniques for joint sensing and communications, with an extension to semantic communications. The integrated system comprises a transmitter and receiver operating over a wireless channel, subject to noise and fading. The transmitter employs a deep neural network (DNN), namely an encoder, for joint operations of source coding, channel coding, and modulation, while the receiver utilizes another DNN, namely a decoder, for joint operations of demodulation, channel decoding, and source decoding to reconstruct the data samples. The transmitted signal serves a dual purpose, supporting communication with the receiver and enabling sensing. When a target is present, the reflected signal is received, and another DNN decoder is utilized for sensing. This decoder is responsible for detecting the target's presence and determining its range. All…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Wireless Signal Modulation Classification
